Hansa: An automated method for discriminating disease and neutral human nsSNPs

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Date
2012-02-01
Authors
Acharya, Vishal
Nagarajaram, Hampapathalu A.
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Abstract
Variations are mostly due to nonsynonymous single nucleotide polymorphisms (nsSNPs), some of which are associated with certain diseases. Phenotypic effects of a large number of nsSNPs have not been characterized. Although several methods have been developed to predict the effects of nsSNPs as "disease" or "neutral," there is still a need for development of methods with improved prediction accuracies. We, therefore, developed a support vector machine (SVM) based method named Hansa which uses a novel set of discriminatory features to classify nsSNPs into disease (pathogenic) and benign (neutral) types. Validation studies on a benchmark dataset and further on an independent dataset of wellcharacterized known disease and neutral mutations show that Hansa outperforms the other known methods. For example, fivefold cross-validation studies using the benchmark HumVar dataset reveal that at the false positive rate (FPR) of 20% Hansa yields a true positive rate (TPR) of 82% that is about 10% higher than the best-known method. © 2011 Wiley Periodicals, Inc.
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Keywords
Disease mutation, Missense mutation, Neutral mutation, nsSNPs, Pathogenic mutation, Support vector machine
Citation
Human Mutation. v.33(2)